Pose estimation and 3D environment reconstruction using less reliable depth data

Sungjin Jo, HyungGi Jo, H. Cho, Euntai Kim
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引用次数: 1

Abstract

Pose estimation and 3D reconstruction of environment are essential technics in robotics and computer vision. In this paper we present a method for camera tracking and 3D reconstruction of static environments, using a ToF sensor which provides less reliable depth information. Based on a primary camera pose, we eliminate outlier in distance measurements. Subsequently, we estimate camera pose again using only inlier data. A voxel grid map is updated by integrating depth measurement with a truncated signed distance function. It is represented as 3D environment reconstruction. Our method is an attractive extending of the pose estimation in outdoor environment. In outdoor environment, 3D range cameras cannot measure the distance or they provide inaccurate distance measurement. The experiments were carried out both in indoor and outdoor and we analyze the results of the proposed methods which use a ToF camera in comparison with a previous approach.
姿态估计和三维环境重建使用不太可靠的深度数据
姿态估计和三维环境重建是机器人技术和计算机视觉中的关键技术。在本文中,我们提出了一种静态环境的相机跟踪和三维重建方法,使用ToF传感器提供不太可靠的深度信息。基于主相机姿态,我们消除了距离测量中的异常值。随后,我们仅使用初始数据再次估计相机姿态。通过将深度测量与截断的带符号距离函数相结合来更新体素网格图。它被表示为三维环境重建。该方法是室外环境下姿态估计的一个有吸引力的扩展。在室外环境下,3D测距相机无法测量距离或提供不准确的距离测量。在室内和室外进行了实验,并与之前的方法进行了比较,分析了使用ToF相机的方法的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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